PulseAugur / Brief
EN
LIVE 10:21:31

Brief

last 24h
[1/1] 222 sources

Multi-source AI news clustered, deduplicated, and scored 0–100 across authority, cluster strength, headline signal, and time decay.

  1. Derivative Informed Learning of Exchange-Correlation Functionals

    Researchers have developed a new method called Derivative Informed XC-Loss (DI-Loss) to improve the accuracy of machine-learned exchange-correlation functionals in computational chemistry. This technique incorporates information from the first and second derivatives of energy, leading to a significant reduction in energy errors and faster self-consistent field iterations. The improved functionals also show better performance in predicting excited states in downstream calculations. AI

    IMPACT Enhances accuracy and efficiency of AI models used in computational chemistry simulations.